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I am a beginner in keras and I have a pytorch code that I need to change it to keras, but I could not understand some part of it. specially I have problems in the size of the output shape. the shape of image is (:, 3,32,32) and the first dimension of image is the size of the batch. now, my question is: what this line do and what is the output shape:

    image_yuv_ch = image[:, channel, :, :].unsqueeze_(1)

it adds a dimension in position 1? what is the output shape?:( the size of filters was (64,8,8) and then we have filters.unsqueez_(1), is this means the new shape of filters is (64,1,8,8)? what does this line do? image_conv = F.conv2d(image_yuv_ch, filters, stride=8) is it the same as conv2d in keras what is the shape of output tensor from it? I also could not understand what view do? I know it tries to show tensor in new shape but in the below code I could not understand the output shape after each unsqueez_, permute or view. could you please tell me what is the output shape of each line? Thank you in advance.

import torch.nn.functional as F
def apply_conv(self, image, filter_type: str):



        if filter_type == 'dct':
            filters = self.dct_conv_weights
        elif filter_type == 'idct':
            filters = self.idct_conv_weights
        else:
            raise('Unknown filter_type value.')

        image_conv_channels = []
        for channel in range(image.shape[1]):
            image_yuv_ch = image[:, channel, :, :].unsqueeze_(1)
            image_conv = F.conv2d(image_yuv_ch, filters, stride=8)
            image_conv = image_conv.permute(0, 2, 3, 1)
            image_conv = image_conv.view(image_conv.shape[0], image_conv.shape[1], image_conv.shape[2], 8, 8)
            image_conv = image_conv.permute(0, 1, 3, 2, 4)
            image_conv = image_conv.contiguous().view(image_conv.shape[0],
                                                  image_conv.shape[1]*image_conv.shape[2],
                                                  image_conv.shape[3]*image_conv.shape[4])

            image_conv.unsqueeze_(1)

            # image_conv = F.conv2d()
            image_conv_channels.append(image_conv)

        image_conv_stacked = torch.cat(image_conv_channels, dim=1)

        return image_conv_stacked

1 Answer 1

5

It seems like you are Keras-user or Tensorflow-user and trying to learn Pytorch. You should go to the website of Pytorch document to understand more about each operation.

  • unsqueeze is to expand the dim by 1 of the tensor. The underscore in unsqueeze_() means this is in-place function.
  • view() can be understood as .reshape() in keras.
  • permute() is to switch multiple dimensions of tensor. For example:
x = torch.randn(1,2,3) # shape [1,2,3]
x = torch.permute(2,0,1) # shape [3,1,2]

In order to know the shape of the tensor after each operation, just simply add print(x.size()). For example:

image_conv = image_conv.permute(0, 2, 3, 1)
print(image_conv.size())

image_conv = image_conv.view(image_conv.shape[0], image_conv.shape[1], 
print(image_conv.size())

image_conv.shape[2], 8, 8)
print(image_conv.size())

image_conv = image_conv.permute(0, 1, 3, 2, 4)
print(image_conv.size())

The big difference between Pytorch and Tensorflow (back-end of Keras) is that Pytorch will generate a dynamic graph, rather than a static graph as Tensorflow. Your way of defining a model would not work properly in Pytorch since the weights of conv will not be save in model.parameters() which can't be optimized during the backpropagation.

One more comment, please check this link to learn how to define a proper model using Pytorch:

import torch.nn as nn
import torch.nn.functional as F
class Model(nn.Module):
    def __init__(self):
        super(Model, self).__init__()
        self.conv1 = nn.Conv2d(1, 20, 5)
        self.conv2 = nn.Conv2d(20, 20, 5)

    def forward(self, x):
       x = F.relu(self.conv1(x))
       return F.relu(self.conv2(x))

The code for the comment:


import torch

x = torch.randn(8, 3, 32, 32)
print(x.shape)
torch.Size([8, 3, 32, 32])
channel = 1
y = x[:, channel, :, :]
print(y.shape)
torch.Size([8, 32, 32])

y = y.unsqueeze_(1)
print(y.shape)
torch.Size([8, 1, 32, 32])

Hope this helps and enjoy your learning!

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  • Thank you for your explanation. I have to change this pytorch code to Keras because I want to use it in Keras. because I do not have pytorch on my system, I cannot implement it to see the output shape:( if my input image has the shape of (:,3,32,32) and the first and second elements are batch size and the number of channels, what will be the output of unsqueez_(1)?
    – nadia
    Apr 30, 2019 at 14:51
  • another question is for conv2d. in Keras, in Conv2D we specify the number of filters, the size of filters and stride separately. here we send filters to conv2d with shape 64x8x8. now, does pytorch consider 64 as the number of filters and 8x8 as the size of filters?
    – nadia
    Apr 30, 2019 at 14:54
  • 1
    (:, 3, 32, 32) -> unsqueeze_(1) you will get (:, 1, 3, 32, 32). But in your code in the question: image[:, channel, :, :].unsqueeze_(1), we have image[:, channel, :, :] -> (:, 32, 32) and then unsqueeze_(1) to get (:, 1, 32, 32).
    – David Ng
    Apr 30, 2019 at 15:42
  • sorry, this means, it is not important what is the value of the channel, right? when I use image[:,channel,:,:].unsqueeze_(1) the output shape for all values in the channel will be (:,1,32,32)? Does this mean unsqueeze_ do noting here? maybe my question is simple but I am really confused with these shape changes in the above code:(
    – nadia
    Apr 30, 2019 at 16:14
  • 1
    maybe you should start learning how to build a model in Pytorch. F.conv2d is a method to perform convolution of a tensor with filters while nn.Conv2d is a module which provide convolution operation as well as encapsulating the parameters of conv to learn in the later.
    – David Ng
    Apr 30, 2019 at 16:31

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